Senior Data & Platform Engineer with Snowflake AI

Anblicks

$120K — $150K *
Enterprise Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 5-7 years of hands-on experience in Snowflake and Python
  • Proven expertise in building and optimizing data models and writing advanced SQL
  • Experience in designing normalized schemas and transformation pipelines
  • Strong proficiency in Python for data engineering tasks
  • Familiarity with AI agents in the Snowflake ecosystem
  • Practical experience with backend integrations using REST APIs and Python
  • Knowledge of PostgreSQL and cloud data infrastructure (Azure or AWS)

Responsibilities

  • Design schemas and write performant SQL in Snowflake
  • Build and maintain ETL/ELT pipelines for data ingestion
  • Develop AI agents leveraging Snowflake Cortex and agent frameworks
  • Create backend integrations with internal and external systems via APIs
  • Implement change management practices for data models
  • Normalize data into consumption-ready formats
  • Automate analytical workflows using AI-driven processes

Benefits

  • Flexible work environment with remote/onsite options
  • Opportunities for professional development and learning
  • Access to cutting-edge technologies and tools
  • Supportive team culture focused on innovation and collaboration
  • Health and wellness programs for employees
Full Job Description
Our intent is to bring in a candidate with strong hands-on expertise in Snowflake and Python, as our insights platform is being consolidated into Snowflake. This role requires someone who can not only deliver immediately in these core areas but also demonstrate the ability and mindset to quickly learn and contribute across adjacent technologies ( Agent Development, Backend Go and Databases).

We are looking for a Senior Data & Platform Engineer. Candidate will design and operate data pipelines that connect heterogeneous source systems, normalize data into consumption-ready models in Snowflake, and build AI-powered agents that surface intelligence across the platform.

Core Responsibilities:

Snowflake engineering: Design schemas, write performant SQL, manage roles & warehouse sizing, and implement change management practices.

ETL / ELT development: Build and maintain pipelines that ingest from diverse sources (APIs, databases, event streams) and normalize data for BI and downstream consumers.

AI agent development: Leverage Snowflake Cortex and AI agent frameworks to build intelligent data products and automate analytical workflows.

Backend & API connectivity: Develop backend integrations with internal and third-party systems via REST APIs and backend services.

Required Skills:

Snowflake - Hands-on experience building and optimizing data models, writing advanced SQL (PIVOT, GROUPING SETS, ROLLUP/CUBE), and managing Snowflake environments in production.

Multi-source integration - Proven ability to connect and ingest data from heterogeneous sources including relational databases, REST APIs, SaaS platforms, and event streams.

ETL / ELT design - Experience designing normalized schemas and transformation pipelines that produce clean, consumption-ready data models (star/snowflake schema, dimensional modeling).

Python - Strong proficiency in Python for data engineering tasks: pipeline orchestration, data transformation, API clients, and scripting automation.

AI agents within Snowflake - Familiarity with Snowflake Cortex, LLM functions, and agent-based patterns for building intelligent, data-driven workflows inside the Snowflake ecosystem.

Backend integration patterns - Practical experience building backend services and integrations using Python, REST APIs, and related tooling (authentication, pagination, error handling, retry logic).

Additional skills:

PostgreSQL & relational databases - Working knowledge of PostgreSQL or equivalent RDBMS, including query optimization, indexing, and schema design patterns.

Go (Golang) - Experience building backend services or microservices in Go is a strong differentiator.

Cloud data infrastructure - Familiarity with Azure or AWS data services (e.g. Azure Data Factory, Event Hubs, S3) as source or orchestration layers.

Data observability & testing - Experience with data quality frameworks, dbt tests, or observability tooling (Great Expectations, Monte Carlo, etc.).

You're a self-directed engineer who thrives at the intersection of data engineering and platform thinking. You can navigate ambiguous requirements, design for scale, and communicate clearly across engineering and product stakeholders. You care about data quality, documentation, and building systems that other teams love to consume.

Similar Jobs

More Jobs at Anblicks

More Enterprise Technology Jobs

Find similar Senior Data & Platform Engineer with Snowflake AI jobs: